High-Dimensional Similarity Query Processing for Data Science
Jianbin Qin, Wei Wang, Chuan Xiao, Ying Zhang, Yaoshu Wang
Abstract
Similarity query (a.k.a. nearest neighbor query) processing has been an active research topic for several decades. It is an essential procedure in a wide range of applications (e.g., classification & regression, deduplication, image retrieval, and recommender systems). Recently, representation learning and auto-encoding methods as well as pre-trained models have gained popularity. They basically deal with dense high-dimensional data, and this trend brings new opportunities and challenges to similarity query processing. Meanwhile, new techniques have emerged to tackle this long-standing problem theoretically and empirically.
Topics & Concepts
Computer scienceQuery expansionSimilarity (geometry)Data deduplicationInformation retrievalRange query (database)PopularityQuery optimizationNearest neighbor searchRange (aeronautics)Web query classificationSargableData miningk-nearest neighbors algorithmWeb search queryArtificial intelligenceImage (mathematics)DatabaseSearch engineMaterials sciencePsychologyComposite materialSocial psychologyAdvanced Image and Video Retrieval TechniquesImage Retrieval and Classification TechniquesData Management and Algorithms